Awesome
f# Lisflood Utilities
This repository hosts source code of LISFLOOD utilities. Go to Lisflood OS page for more information.
Other useful resources
Project | Documentation | Source code |
---|---|---|
Lisflood | Model docs | https://github.com/ec-jrc/lisflood-code |
User guide | ||
Lisvap | Docs | https://github.com/ec-jrc/lisflood-lisvap |
Calibration tool | Docs | https://github.com/ec-jrc/lisflood-calibration |
Lisflood Utilities | https://github.com/ec-jrc/lisflood-utilities (this repository) | |
Lisflood Usecases | https://github.com/ec-jrc/lisflood-usecases |
Intro
Lisflood Utilities is a set of tools to help LISFLOOD users (or any users of PCRaster/NetCDF files) to execute some mundane tasks that are necessary to operate lisflood. Here's a list of utilities you can find in lisflood-utilities package.
-
pcr2nc is a tool to convert PCRaster maps to NetCDF4 files.
- convert a single map into a NetCDF4 file
- convert a time series of maps into a NetCDF4 mapstack
- support for WGS84 and ETRS89 (LAEA) reference systems
- fine tuning of output files (compression, significant digits, etc.)
-
nc2pcr is a tool to convert a NetCDF file into PCRaster maps.
- convert 2D variables in single PCRaster maps
- NetCDF4 mapstacks are not supported yet
-
cutmaps is a tool to cut NetCDF files in order to reduce size, using either
- a bounding box of coordinates
- a bounding box of matrix indices
- an existing boolean area mask
- a list of stations and a LDD ("local drain direction" in NetCDF or PCRaster format)
Note: PCRaster must be installed in the Conda environment.
-
compare is a package containing a set of simple Python classes that helps to compare NetCDF, PCRaster and TSS files.
-
thresholds is a tool to compute the discharge return period thresholds from NetCDF4 file containing a discharge time series.
-
water-demand-historic is a package allowing to generate sectoral (domestic, livestock, industry, and thermoelectric) water demand maps with monthly to yearly temporal steps for a range of past years, at the users’ defined spatial resolution and geographical extent. These maps are required by the LISFLOOD OS water use module
-
waterregions is a package containing two scripts that allow to create and verify a water regions map, respectively.
-
gridding is a tool to interpolate meteo variables observations stored in text files containing (lon, lat, value) into grids.
- uses inverse distance interpolation
- input file names must use format: <var>YYYYMMDDHHMI_YYYYMMDDHHMISS.txt
- option to store all interpolated grids in a single NetCDF4 file
- option to store each interpolated grid in a GeoTIFF file
- output files are compressed
- grids are setup in the configuration folder and are defined by a dem.nc file
- meteo variables parameters are defined in the same configuration folder
-
cddmap is a tool to generate correlation decay distance (CDD) maps starting from station timeseries
-
ncextract is a tool to extract values from NetCDF4 (or GRIB) file(s) at specific coordinates.
-
catchstats calculates catchment statistics (mean, sum, std, min, max...) from NetCDF4 files given masks created with
cutmaps
.
The package contains convenient classes for reading/writing:
- PCRasterMap
- PCRasterReader
- NetCDFMap
- NetCDFWriter
Installation
Requisites
The easy way is to use conda environment as they incapsulate C dependencies as well, so you wouldn't need to install libraries.
Otherwise, ensure you have properly installed the following software:
- Python 3.5+
- GDAL C library and software
- NetCDF4 C library
Install
If you use conda, create a new env (or use an existing one) and install gdal and lisflood-utilities:
conda create --name myenv python=3.7 -c conda-forge
conda activate myenv
conda install -c conda-forge pcraster eccodes gdal
pip install lisflood-utilities
If you don't use conda but a straight python3 virtualenv:
source /path/myenv/bin/activate
pip install lisflood-utilities
If GDAL library fails to install, ensure to install the same package version of the C library you have on your system. You may also need to setup paths to gdal headers.
To check which version of GDAL libraries you have installed on your computer, use gdal-config
sudo apt-get install libgdal-dev libgdal
export CPLUS_INCLUDE_PATH=/usr/include/gdal
export C_INCLUDE_PATH=/usr/include/gdal
gdal-config --version # 3.0.1
pip install GDAL==3.0.1
Note: if you previously installed an older version of the lisflood-utilities, it is highly recommended to remove it before installing the newest version:
pip uninstall lisflood-utilities
pip install -e./
pcr2nc
Usage
Note: This guide assumes you have installed the program with pip tool. If you cloned the source code instead, just substitute the executable
pcr2nc
withpython pcr2nc_script.py
that is in the root folder of the cloned project.
The tool takes three command line input arguments:
- -i, --input: It can be a path to a single file, a folder or a unix-like widlcard expression like /path/to/files/dis00*
- -o, --output_file: Path to the output nc file
- -m, --metadata: Path to a yaml or json file containing configuration for the NetCDF4 output file.
Unless the input is a single file, the resulting NetCDF4 file will be a mapstack according to a time dimension.
Input as a folder containing PCRaster maps. In this case, the folder must contain ONLY PCraster files and the output will be a mapstack.
pcr2nc -i /path/to/input/ -o /path/to/output/out.nc -m ./nc_metadata.yaml
Input as a path to a single map. In this case, the output won't be a mapstack.
pcr2nc -i /path/to/input/pcr.map -o /path/to/output/out.nc -m ./nc_metadata.yaml
Input as a Unix style pathname pattern expansion. The output will be a mapstack. Note that in this case the input argument must be contained in double quotes!
pcr2nc -i "/path/to/input/pcr00*" -o /path/to/output/out.nc -m ./nc_metadata.json
Writing metadata configuration file
Format of resulting NetCDF4 file is configured into a metadata configuration file. This file can be written in YAML or JSON format.
An example of a metadata configuration file is the following
variable:
shortname: dis
description: Discharge
longname: discharge
units: m3/s
compression: 9
least_significant_digit: 2
source: JRC Space, Security, Migration
reference: JRC Space, Security, Migration
geographical:
datum: WGS84
variable_x_name: lon
variable_y_name: lat
time:
calendar: proleptic_gregorian
units: days since 1996-01-01
Variable section
In variable
section you can configure metadata for the main variable:
shortname
: A short name for the variablelongname
: The long name versiondescription
: A description for humansunits
: The units of the variablecompression
: Optional, integer number between 1 and 9, default 0 (no compression). If present the output nc file will be compressed at this level.least_significant_digit
: Optional, integer number, default 2. From NetCDF4 documentation:
If your data only has a certain number of digits of precision (say for example, it is temperature data that was measured with a precision of 0.1 degrees), you can dramatically improve zlib compression by quantizing (or truncating) the data using the least_significant_digit keyword argument to createVariable. The least significant digit is the power of ten of the smallest decimal place in the data that is a reliable value. For example if the data has a precision of 0.1, then setting least_significant_digit=1 will cause data the data to be quantized using
numpy.around(scale*data)/scale
, wherescale = 2**bits
, and bits is determined so that a precision of 0.1 is retained (in this case bits=4). Effectively, this makes the compression 'lossy' instead of 'lossless', that is some precision in the data is sacrificed for the sake of disk space.
Source and reference
source
and reference
add information for the institution that is providing the NetCDF4 file.
Geographical section
In the geographical
section you can configure datum
and name of the x and y variables. As variable_x_name
and variable_y_name
you should use 'lon' and 'lat' for geographical coordinates (e.g. WGS84) and 'x' and 'y' for projected coordinates (e.g. ETRS89).
Currently, pcr2nc supports the following list for datum
:
WGS84
ETRS89
GISCO
Time section
This section is optional and is only required if the output file is a mapstack (a timeseries of georeferenced 2D arrays)
In this section you have to configure units
and calendar
.
units
: Can be one of the following strings (replacing placeholders with the actual date):hours since YYYY-MM-DD HH:MM:SS
days since YYYY-MM-DD
calendar
: A recognized calendar identifier, likeproleptic_gregorian
,gregorian
etc.
nc2pcr
This tool converts single maps NetCDF (time dimension is not supported yet) to PCRaster format.
Usage
nc2pcr -i /path/to/input/file.nc -o /path/to/output/out.map [-c /path/to/clone.map optional]
If input file is a LDD map, you must add the -l
flag:
nc2pcr -i /path/to/input/ldd.nc -o /path/to/output/ldd.map -l [-c /path/to/clone.map optional]
cutmaps
This tool cuts NetCDF files using either a mask, a bounding box, or a list of stations along with a LDD (local drain direction) map.
Usage
The tool requires a series of arguments:
- The area to be extracted can be defined in one of the following ways:
-m
,--mask
: a mask map (either PCRaster or NetCDF format).-i
,--cuts_indices
: a bounding box defined by matrix indices in the form-i imin imax jmin jmax
(the indices must be integers).-c
,--cuts
: a bounding box defined by coordinates in the form-c xmin xmax ymin ymax
(the coordinates can be integer or floating point numbers; x = longitude, y = latitude).-N
,-stations
: a list of stations included in a tab separated text file. This approach requires a LDD (local drain direction) map as an extra input, defined with the argument-l
(-ldd
).
- The files to be cut may be defined in one of the following ways:
-f
,--folder
: a folder containing NetCDF files.-F
,--file
: a single netCDF file to be cut.-S
,--subdir
: a directory containing a number of folders
- The resulting files will be saved in the folder defined by the argument
-o
(--outpath
).
There are additional optional arguments
-W
,--overwrite
: it allows to overwrite results.-C
,--clonemap
: it can be used to define a clone map when the LDD input map (argument-l
) is in NetCDF format.
Examples
Using a mask
The following command will cut all NetCDF files inside a specific folder (argument -f
) using a mask (argument -m
). The mask is a boolean map (1 only in the area of interes) that cutmaps
uses to create a bounding box. The resulting files will be written in the current folder (argument -o
).
cutmaps -m /workarea/Madeira/maps/MaskMap/Bacia_madeira.nc -f /workarea/Madeira/lai/ -o ./
Using indices
The following command cuts all the maps in an input folder (argument -f
) using a bounding box defined by matrix indices (argument -i
). Knowing your area of interest from your NetCDF files, you can determine indices of the array and pass them in the form -i imin imax jmin jmax
(integer numbers).
cutmaps -i "150 350 80 180" -f /workarea/Madeira/lai/ -o ./
Using coordinates
The following command cuts all the maps in an input directory containing several folders (argument -S
) using a bounding box defined by coordinates (argument -c
). The argument -W
allows to overwrite pre-existing files in the output directory (argument -o
):
cutmaps -S /home/projects/lisflood-eu -c "4078546.12 4463723.85 811206.57 1587655.50" -o /Work/Tunisia/cutmaps -W
Using station coordinates and a local drain direction map
The TXT file with stations must have a specific format as in the example below. Each row represents a stations, and it contains three columns separated by tabs that indicated the X and Y coordinates (or lon and lat) and the ID of the station.
4297500 1572500 1
4292500 1557500 2
4237500 1537500 3
4312500 1482500 4
4187500 1492500 5
The following command will cut all the maps in a specific folder (-f
argument) given a LDD map (-l
argument) and the previous text file (-N
argument), and save the results in a folder defined by the argument -o
.
cutmaps -f /home/projects/lisflood-eu -l ldd.map -N stations.txt -o /Work/Tunisia/cutmaps
If the LDD is in NetCDF format, it will be first converted into PCRaster format.
cutmaps -f /home/projects/lisflood-eu -l ldd.nc -N stations.txt -o /Work/Tunisia/cutmaps
If you experience problems, you can try to pass a path to a PCRaster clone map using the -C
argument.
cutmaps -f /home/projects/lisflood-eu -l ldd.nc -C area.map -N stations.txt -o /Work/Tunisia/cutmaps
Output
Apart from the cut files in the output folder specified in the command prompt, cutmaps
produces other outputs in the folder where the LDD map is stored:
- mask.map and mask.nc for your area of interest, which may be needed in subsequent LISFLOOD/LISVAP executions.
- outlets.map and outlets.nc based on stations.txt, which will let you produce gauges TSS if configured in LISFLOOD.
compare
This tool compares two NetCDF datasets. You can configure it with tolerances (absolute --atol
, relative --rtol
, thresholds for percentage of tolerated different values --max-diff-percentage
). You can also set the option --save-diffs
to write files with the diffences, so that you can inspect maps and differences with tools like Panoply.
usage: compare [-h] -a DATASET_A -b DATASET_B -m MASKAREA [-M SUBMASKAREA]
[-e] [-s] [-D] [-r RTOL] [-t ATOL] [-p MAX_DIFF_PERCENTAGE]
[-l MAX_LARGEDIFF_PERCENTAGE]
Compare NetCDF outputs: 0.12.12
optional arguments:
-h, --help show this help message and exit
-a DATASET_A, --dataset_a DATASET_A
path to dataset version A
-b DATASET_B, --dataset_b DATASET_B
path to dataset version B
-m MASKAREA, --maskarea MASKAREA
path to mask
-e, --array-equal flag to compare files to be identical
-s, --skip-missing flag to skip missing files in comparison
-D, --save-diffs flag to save diffs in NetCDF files for visual
comparisons. Files are saved in ./diffs folder of
current directory.For each file presenting
differences, you will find files diffs, original A and
B (only for timesteps where differences are found).
-r RTOL, --rtol RTOL rtol
-t ATOL, --atol ATOL atol
-p MAX_DIFF_PERCENTAGE, --max-diff-percentage MAX_DIFF_PERCENTAGE
threshold for diffs percentage
-l MAX_LARGEDIFF_PERCENTAGE, --max-largediff-percentage MAX_LARGEDIFF_PERCENTAGE
threshold for large diffs percentage
thresholds
The thresholds tool computes the discharge return period thresholds using the method of L-moments. It is used to post-process the discharge from the LISFLOOD long term run. The resulting thresholds can be used in a flood forecasting system to define the flood warning levels.
Usage:
The tool takes as input a Netcdf file containing the annual maxima of the discharge signal. LISFLOOD computes time series of discharge values (average value over the selected computational time step). The users are therefore required to compute the annual maxima. As an example, this step can be achieved by using CDO (cdo yearmax), for all the details please refer to https://code.mpimet.mpg.de/projects/cdo/embedded/index.html#x1-190001.2.5
The output NetCDF file contains the following return period thresholds [1.5, 2, 5, 10, 20, 50, 100, 200, 500], together with the Gumbel parameters (sigma and mu).
usage: thresholds [-h] [-d DISCHARGE] [-o OUTPUT]
Utility to compute the discharge return period thresholds using the method of L-moments.
Thresholds computed: [1.5, 2, 5, 10, 20, 50, 100, 200, 500]
options:
-h, --help show this help message and exit
-d DISCHARGE, --discharge DISCHARGE
Input discharge files (annual maxima)
-o OUTPUT, --output OUTPUT
Output thresholds file
water-demand-historic
This utility allows to create water demand maps at the desired resolution and for the desired geographical areas. The maps indicate, for each pixel, the time-varying water demand map to supply for domestic, livestock, industrial, and thermoelectric water consumption. The temporal discretization is monthly for domestic and energy demand, yearly for industrial and livestock demand. The maps of sectoral water demand are required by the LISFLOOD OS water use module. Clearly, the sectoral water demand maps and the scripts of this utility can be used also for other applications, as well as for stand-alone analysis of historical water demand for anthropogenic use.
Input
The creation of the sectoral water demand maps requires a template map that defines the desired geographical area and spatial resolution. The generation of the maps relies on a number of external datasets (examples are the Global Human Settlement - Datasets - European Commission (europa.eu) and FAO AQUASTAT Dissemination System). The locations of the template map, of the input datasets and files, of the output folder, and other users’ choices (e.g. start year and end year) are specified in a configuration file. The syntax of the configuration file is pre-defined and an example is provided to the users. The complete list of external datasets, the instructions on how to prepare (i) the external dataset, (ii) the template map, (iii) the input folder, (iv) the output folder, and (v) the configuration file are explained into details here
Output
Four sectoral water demand maps in netCDF-4 format. The geographical extent and the spatial resolution are defined by the template map (users-defined input file). Each netCDF-4 file has 12 months, for each year included in the temporal time span identified by the user. Sectoral water demand data with lower (yearly) temporal resolution are repeated 12 times.
Usage
The methodology includes five main steps. The instructions on how to retrieve the scrips, create the environment including all the required packages, and use the utility are provided here
Important notes on documentation and data availability
The complete list of external datasets, the instructions on how to retrieve the external datasets, the methodology, and the usage of the scripts are explained into details here. The README file provides detailed technical information about the input datasets and the usage of this utility. The methodology is explained in the manuscript: Choulga, M., Moschini, F., Mazzetti, C., Grimaldi, S., Disperati, J., Beck, H., Salamon, P., and Prudhomme, C.: Technical note: Surface fields for global environmental modelling, EGUsphere, 2023 (preprint).
The global sectoral water demand maps at 3 arcmin (or 0.05 degrees) resolution, 1979-2019, produced using the scripts of this utility can be downloaded from Joint Research Centre Data Catalogue - LISFLOOD static and parameter maps for GloFAS - European Commission (europa.eu)
waterregions
The modelling of water abstraction for domestic, industrial, energetic, agricoltural and livestock use can require a map of the water regions. The concept of water regions and information for their definition are explained here. Since groundwater and surface water resources demand and abstraction are spatially distributed inside each water region, each model set-up must include all the pixels of the water region. This requirement is crucial for the succes of the calibration of the model. This utility allows the user to meet this requirement. More specifically, this utility can be used to:
- create a water region map which is consistent with a set of calibration points: this purpose is achieved by using the script define_waterregions.
- verify the consistency between an existing water region map and an exixting map of calibration catchments: this purpose is achieved by using the script verify_waterregions It is here reminded that when calibrating a catchment which is a subset of a larger computational domain, and the option wateruse is switched on, then the option groudwatersmooth must be switched off. The explanation of this requirement is provided in the chapter Water use of the LISFLOOD documentation.
Requirements
python3, pcraster 4.3. The protocol was tested on Linux.
define_waterregions
This utility allows to create a water region map which is consistent with a set of calibration points. The protocol was created by Ad De Roo (Unit D2, Joint Research Centre).
Input
- List of the coordinates of the calibration points. This list must be provided in a .txt file with three columns: LONGITUDE(or x), LATITUDE(or y), point ID.
- LDD map can be in NetCDF format or pcraster format. When using pcraster format, the following condition must be satisfied: PCRASTER_VALUESCALE=VS_LDD.
- Countries map in NetCDF format or pcraster format. When using pcraster format, the following condition must be satisfied: PCRASTER_VALUESCALE=VS_NOMINAL. This map shows the political boundaries of the Countries, each Coutry is identified by using a unique ID. This map is used to ensure that the water regions are not split accross different Countries.
- Map of the initial definition of the water regions in NetCDF format or pcraster format. When using pcraster format, the following condition must be satisfied: PCRASTER_VALUESCALE=VS_NOMINAL. This map is used to attribute a water region to areas not included in the calibration catchments. In order to create this map, the user can follow the guidelines provided here.
- file .yaml or .json to define the metadata of the output water regions map in NetCDF format. An example of the structure of these files is provided here
Input data provided by this utility:
This utility provides three maps of Countries IDs: 1arcmin map of Europe (EFAS computational domain), 0.1 degree and 3arcmin maps of the Globe. ACKNOWLEDGEMENTS: both the rasters were retrieved by upsampling the original of the World Borders Datase provided by http://thematicmapping.org/ (the dataset is available under a Creative Commons Attribution-Share Alike License).
Output
Map of the water regions which is consistent with the calibration catchments. In other words, each water region is entirely included in one calibration catchment. The test to check the consistency between the newly created water regions map and the calibration catchments is implemented internally by the code and the outcome of the test is printed on the screen. In the output map, each water region is identified by a unique ID. The format of the output map can be NetCDF or pcraster.
Usage
The following command lines allow to produce a water region map which is consistent with the calibration points (only one commad line is required: each one of the command lines below shows a different combination of input files format):
python define_waterregions.py -p calib_points_test.txt -l ldd_test.map -C countries_id_test.map -w waterregions_initial_test.map -o my_new_waterregions.map <br>
python define_waterregions.py -p calib_points_test.txt -l ldd_test.nc -C countries_id_test.nc -w waterregions_initial_test.nc -o my_new_waterregions.nc -m metadata.test.json <br>
python define_waterregions.py -p calib_points_test.txt -l ldd_test.map -C countries_id_test.nc -w waterregions_initial_test.map -o my_new_waterregions.nc -m metadata.test.yaml <br>
The input maps can be in nectdf format or pcraster format (the same command line can accept a mix of pcraster and NetCDF formats).It is imperative to write the file name in full, that is including the extension (which can be either ".nc" or ".map").<br> The utility can return either a pcraster file or a NetCDF file. The users select their preferred format by specifying the extension of the file in the output option (i.e. either ".nc" or ".map"). <br> The metadata file in .yaml format must be provided only if the output file is in NetCDF format.<br>
The code internally verifies that the each one of the newly created water regions is entirely included within one calibration catchments. If this condition is satisfied, the follwing message in printed out: “OK! Each water region is completely included inside one calibration catchment”. If the condition is not satisfied, the error message is “ERROR: The water regions WR are included in more than one calibration catchment”. Moreover, the code provides the list of the water regions WR and the calibration catchments that do not meet the requirment. This error highlight a problem in the input data: the user is recommended to check (and correct) the list of calibration points and the input maps.
The input and output arguments are listed below.
usage: define_waterregions.py [-h] -p CALIB_POINTS -l LDD -C COUNTRIES_ID -w
WATERREGIONS_INITIAL -o OUTPUT_WR
Define Water Regions consistent with calibration points: {}
optional arguments:
-h, --help show this help message and exit
-p CALIB_POINTS, --calib_points CALIB_POINTS
list of calibration points: lon or x, lat or y, point id. File extension: .txt,
-l LDD, --ldd LDD LDD map, file extension: .nc or .map
-C COUNTRIES_ID, --countries_id COUNTRIES_ID
map of Countries ID, fike extension .nc or .map
-w WATERREGIONS_INITIAL, --waterregions_initial WATERREGIONS_INITIAL
initial map of water regions, file extension: .nc or .map
-o OUTPUT_WR, --output_wr OUTPUT_WR
output map of water regions, file extension: .nc or .map
-m METADATA, --metadata_file METADATA
Path to metadata file for NetCDF, .yaml or .json format
verify_waterregions
This function allows to verify the consistency between a water region map and a map of calibration catchments. This function must be used when the water region map and the map of calibration catchments have been defined in an independent manner (i.e. not using the utility define_waterregions). The function verify_waterregions verifies that each water region map is entirely included in one calibration catchment. If this condition is not satisfied, an error message is printed on the screen.
Input
- Map of calibration catchments in NetCDF format.
- Water regions map in NetCDF format.
Output
The output is a message on the screen. There are two options:
- 'OK! Each water region is completely included inside one calibration catchment.'
- 'ERROR: The water regions WR are included in more than one calibration catchment’: this message is followed by the list of the water regions and of the catchment that raised the isuue. In case of error message, the user can implement the function define_waterregions.
Usage
The following command line allows to produce a water region map which is consistent with the calibration points:
python verify_waterregions.py -cc calib_catchments_test.nc -wr waterregions_test.nc
The input and output arguments are listed below. All the inputs are required.
usage: verify_waterregions.py [-h] -cc CALIB_CATCHMENTS -wr WATERREGIONS
Verify that the Water Regions map is consistent with the map of the
calibration catchments
optional arguments:
-h, --help show this help message and exit
-cc CALIB_CATCHMENTS, --calib_catchments CALIB_CATCHMENTS
map of calibration catchments, NetCDF format
-wr WATERREGIONS, --waterregions WATERREGIONS
map of water regions, NetCDF format
NOTE: The utility pcr2nc can be used to convert a map in pcraster format into NetCDF format.
gridding
This tool is used to interpolate meteo variables observations stored in text files containing (lon, lat, value) into grids. It uses inverse distance interpolation method from pyg2p.
Requirements
python3, pyg2p
Usage
Note: This guide assumes you have installed the program with pip tool. If you cloned the source code instead, just substitute the executable
gridding
withpython bin/gridding
that is in the root folder of the cloned project.
The tool requires four mandatory command line input arguments:
- -i, --in: Set input folder path with kiwis/point files
- -o, --out: Set output folder base path for the tiff files or the NetCDF file path.
- -c, --conf: Set the grid configuration type to use. Right now only 5x5km, 1arcmin are available.
- -v, --var: Set the variable to be processed. Right now only variables pr,pd,tn,tx,ws,rg,pr6,ta6 are available.
The input folder must contain the meteo observation in text files with file name format: <var>YYYYMMDDHHMI_YYYYMMDDHHMISS.txt The files must contain the columns longitude, latitude, observation_value is separated by TAB and without the header. Not mandatory but could help to store the files in a folder structure like: ./YYYY/MM/DD/<var>YYYYMMDDHHMI_YYYYMMDDHHMISS.txt
Example of command that will generate a NetCDF file containing the precipitation (pr) grids for March 2023:
gridding -i /meteo/pr/2023/ -o /meteo/pr/pr_MARCH_2023.nc -c 1arcmin -v pr -s 202303010600 -e 202304010600
The input and output arguments are listed below and can be seen by using the help flag.
gridding --help
usage: gridding [-h] -i input_folder -o {output_folder, NetCDF_file} -c
{5x5km, 1arcmin,...} -v {pr,pd,tn,tx,ws,rg,...}
[-d files2process.txt] [-s YYYYMMDDHHMISS] [-e YYYYMMDDHHMISS]
[-q] [-t] [-f]
version v0.1 ($Mar 28, 2023 16:01:00$) This script interpolates meteo input
variables data into either a single NETCDF4 file or one GEOTIFF file per
timestep. The resulting NetCDF is CF-1.6 compliant.
optional arguments:
-h, --help show this help message and exit
-i input_folder, --in input_folder
Set input folder path with kiwis/point files
-o {output_folder, NetCDF_file}, --out {output_folder, NetCDF_file}
Set output folder base path for the tiff files or the
NetCDF file path.
-c {5x5km, 1arcmin,...}, --conf {5x5km, 1arcmin,...}
Set the grid configuration type to use.
-v {pr,pd,tn,tx,ws,rg,...}, --var {pr,pd,tn,tx,ws,rg,...}
Set the variable to be processed.
-d files2process.txt, --dates files2process.txt
Set file containing a list of filenames to be
processed in the form of
<var>YYYYMMDDHHMI_YYYYMMDDHHMISS.txt
-s YYYYMMDDHHMISS, --start YYYYMMDDHHMISS
Set the start date and time from which data is
imported [default: date defining the time units inside
the config file]
-e YYYYMMDDHHMISS, --end YYYYMMDDHHMISS
Set the end date and time until which data is imported
[default: 20230421060000]
-q, --quiet Set script output into quiet mode [default: False]
-t, --tiff Outputs a tiff file per timestep instead of the
default single NetCDF [default: False]
-f, --force Force write to existing file. TIFF files will be
overwritten and NetCDF file will be appended.
[default: False]
cddmap
This tool is used to generate correlation decay distance (CDD) maps starting from station timeseries
Requirements
python3, pyg2p
Usage
cddmap [directory]/[--analyze]/[--merge-and-filter-jsons]/--generatemap] [--start first_station] [--end last_station] [--parallel] [--only-extract-timeseries timeseries_keys_file] [--maxdistance max_distance_in_km]
The tool requires an input argument indicating the station timeseries main folder, and calculates the CDD for each stations as well as correlations and distances files. Outputs the results in a txt file containing station coordinates and CDD values. After creating the CDD txt file, it can be used with one of the following commands:
- --analyze: read cdd file previously created for postprocessing
- --merge-and-filter-jsons: merge all cdd files in a folder and filters out a list of stations.
- --generatemap: generate a NetCDF CDD map file using CDD txt file and angular distance weighted interpolation between station points
- --start and --end arguments are used to split the task in many sub tesks, evaluating only the stations between "start" and "end", since the CDD evaluation can be very time-demanding.
- --only-extract-timeseries: in combination with path of the station's main folder, extracts the timeseries specified in the timeseries_keys_file txt list of keys
- --parallel: enable CDD evaluation in parallel on multiple cores. It will require more memory
- --maxdistance: evaluates only station that are clores then maxdistance in km
The input folder must contain the meteo observation in text files
Example of command that will generate txt files for the CDD of precipitation (pr), in parallel mode, for station that are closer then 500 kms:
cddmap /meteo/pr --parallel --maxdistance 500
ncextract
The ncextract
tool extracts time series from (multiple) NetCDF or GRIB file(s) at user defined coordinates.
Usage
The tool takes as input a CSV file containing point coordinates and a directory containing one or more NetCDF or GRIB files. The CSV files must contain only three columns: point identifier, and its two coordinates. The name of the coordinate fields must match those in the NetCDF or GRIB files. For example:
ID,lat,lon
0010,40.6083,-4.2250
0025,37.5250,-6.2750
0033,40.5257,-6.4753
The output is a file containing the time series at the pixels corresponding to the provided coordinates, in chronological order. The function supports two otput formats: CSV or NetCDF.
usage: ncextract.py [-h] -i INPUT -d DIRECTORY -o OUTPUT [-nc]
Utility to extract time series of values from (multiple) NetCDF files at specific coordinates.
Coordinates of points of interest must be included in a CSV file with at least 3 columns named id,
lat, lon.
options:
-h, --help show this help message and exit
-i INPUT, --input INPUT
Input CSV file (id, lat, lon)
-d DIRECTORY, --directory DIRECTORY
Input directory with .nc files
-o OUTPUT, --output OUTPUT
Output file. Two extensions are supported: .csv or .nc
Use in the command prompt
The following command extracts the discharge time series from EFAS simulations (NetCDF files in the directory EFAS5/discharge/maps) in a series of points where gauging stations are located (file gauging_stations.csv), and saves the extraction as a CSV file.
ncextract -i ./gauging_stations.csv -d ./EFAS5/discharge/maps/ -o ./EFAS5/discharge/timeseries/results_ncextract.csv
Use programmatically
The function can be imported in a Python script. It takes as inputs two xarray.Dataset
: one defining the input maps and the other the points of interest. The result of the extraction can be another xarray.Dataset
, or saved as a file either in CSV or NetCDF format.
from lisfloodutilities.ncextract import extract_timeseries
# load desired input maps and points
# maps: xarray.Dataset
# points: xarray.Dataset
# extract time series and save in a xarray.Dataset
ds = extract_timeseries(maps, points, output=None)
catchstats
The catchstats
tool calculates catchment statistics given a set of input NetCDF files and a set of mask NetCDF files.
Usage
In the command prompt
The tool takes as input a directory containing the NetCDF files from which the statistics will be computed, and another directory containing the NetCDF files that define the catchment boundaries, which can be any of the outputs of cutmaps
(not necessarily the file my_mask.nc). The input files can be the LISFLOOD static maps (no temporal dimension) or stacks of maps with a temporal dimension. The mask NetCDF files must be named after the catchment ID, as this name will be used to identify the catchment in the output NetCDF. For instance, 0142.nc would correspond to the mask of catchment 142. Optionally, an extra NetCDF file can be passed to the tool to account for different pixel area; in this case, the statistics will be weighted by this pixel area map.
Only some statistics are currently available: mean, sum, std (standard deviation), var (variance), min, max, median and count. The weighing based on pixel area does not affect the statistics min, max, median nor count.
The output are NetCDF files (as many as catchments in the mask directory) containing the resulting statistics.
usage: catchstats.py [-h] -i INPUT -m MASK -s STATISTIC -o OUTPUT -a AREA [-W]
Utility to compute catchment statistics from (multiple) NetCDF files.
The mask map is a NetCDF file with values in the area of interest and NaN elsewhere.
The area map is optional and accounts for varying pixel area with latitude.
options:
-h, --help
show this help message and exit
-i INPUT, --input INPUT
directory containing the input NetCDF files
-m MASK, --mask MASK
directory containing the mask NetCDF files
-s STATISTIC, --statistic STATISTIC
list of statistics to be computed. Possible values: mean, sum, std, var, min, max, median, count
-o OUTPUT, --output OUTPUT
directory where the output NetCDF files will be saved
-a AREA, --area AREA
NetCDF file of pixel area used to weigh the statistics
-W, --overwrite
overwrite existing output files
Example
The following command calculates the average and total precipitation for a set of catchemtns from the dataset EMO-1. The static map pixarea.nc is used to account for varying pixel area.
catchstats -i ./EMO1/pr/ -m ./masks/ -s mean sum -o ./areal_precipitation/ -a ./EFAS5/static_maps/pixarea.nc
In a Python script
The tool can be imported in a Python script to be able to save in memory the output. This function takes in a xarray.Dataset
with the input maps from which statistics will be computed, a dictionary of xarray.DataArray
with the catchment masks, and optionally the weighing map. By default, the result is a xarray.Dataset
, but NetCDF files could be written, instead, if a directory is provided in the output
attribute.
# import function
from lisfloodutilities.catchstats import catchment_statistics
# load desired input maps and catchment masks
# maps: xarray.Dataset
# masks: Dict[int, xarray.DataArray]
# compute statistics and save in a xarray.Dataset
ds = catchment_statistics(maps, masks, statistic=['mean', 'sum'], weight=None, output=None)
Ouput
The structure of the output depends on whether the input files include a temporal dimension or not:
- If the input files DO NOT have a time dimension, the output has a single dimension: the catchment ID. It contains as many variables as the combinations of input variables and statistics. For instance, if the input variables are "elevation" and "gradient" and three statistics are required ("mean", "max", "min"), the output will contain 6 variables: "elevation_mean", "elevation_max", "elevation_min", "gradient_mean", "gradient_max" and "gradient_min".
- If the input files DO have a time dimension, the output has two dimensions: the catchment ID and time. The number of variables follows the same structure explained in the previous point. For instance, if the input files are daily maps of precipitation (variable name "pr") and we calculate the mean and total precipitation over the catchment, the output will contain two dimensions ("ID", "time") and two variables ("pr_mean", "pr_sum").
Using lisfloodutilities
programmatically
You can use lisflood utilities in your python programs. As an example, the script below creates the mask map for a set of stations (stations.txt). The mask map is a boolean map with 1 and 0. 1 is used for all (and only) the pixels hydrologically connected to one of the stations. The resulting mask map is in pcraster format.
from lisfloodutilities.cutmaps.cutlib import mask_from_ldd
from lisfloodutilities.nc2pcr import convert
from lisfloodutilities.readers import PCRasterMap
ldd = 'tests/data/cutmaps/ldd_eu.nc'
clonemap = 'tests/data/cutmaps/area_eu.map'
stations = 'tests/data/cutmaps/stations.txt'
ldd_pcr = convert(ldd, clonemap, 'tests/data/cutmaps/ldd_eu_test.map', is_ldd=True)[0]
mask, outlets_nc, maskmap_nc = mask_from_ldd(ldd_pcr, stations)
mask_map = PCRasterMap(mask)
print(mask_map.data)